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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >A Telescopic Binary Learning Machine for Training Neural Networks
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A Telescopic Binary Learning Machine for Training Neural Networks

机译:一种用于训练神经网络的可伸缩二进制学习机

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This paper proposes a new algorithm based on multiscale stochastic local search with binary representation for training neural networks [binary learning machine (BLM)]. We study the effects of neighborhood evaluation strategies, the effect of the number of bits per weight and that of the maximum weight range used for mapping binary strings to real values. Following this preliminary investigation, we propose a telescopic multiscale version of local search, where the number of bits is increased in an adaptive manner, leading to a faster search and to local minima of better quality. An analysis related to adapting the number of bits in a dynamic way is presented. The control on the number of bits, which happens in a natural manner in the proposed method, is effective to increase the generalization performance. The learning dynamics are discussed and validated on a highly nonlinear artificial problem and on real-world tasks in many application domains; BLM is finally applied to a problem requiring either feedforward or recurrent architectures for feedback control.
机译:本文提出了一种新的基于二进制表示的多尺度随机局部搜索算法,用于训练神经网络[二进制学习机(BLM)]。我们研究了邻域评估策略的影响,每权重位数的影响以及用于将二进制字符串映射到实数值的最大权重范围的影响。在进行了此初步研究之后,我们提出了局部搜索的伸缩多尺度版本,其中以自适应方式增加位数,从而导致搜索速度更快,并导致质量更高的局部最小值。提出了与以动态方式调整位数有关的分析。在所提出的方法中以自然的方式进行的位数控制可以有效地提高泛化性能。在一个高度非线性的人工问题和许多应用领域中的实际任务上讨论并验证了学习动力。 BLM最终应用于需要前馈或递归体系结构进行反馈控制的问题。

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